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An CNN-LSTM Attention Approach to Understanding User Query Intent from Online Health Communities

机译:CNN-LSTM注意方法,用于了解在线健康社区的用户查询意图

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Understanding user query intent is a crucial task to Question-Answering area. With the development of online health services, online health communities generate huge amount of valuable medical Question-Answering data, where user intention can be mined. However, the queries posted by common users have many domain concepts and colloquial expressions, which make the understanding of user intents very difficult. In this paper, we try to find and predict user intent from the realistic medical text queries. A CNN-LSTM attention model is proposed to predict user intents, and an unsupervised clustering method is applied to mine user intent taxonomy. The CNN-LSTM attention model has a CNN encoders and a Bi-LSTM attention encoder. The two encoder can capture both of global semantic expression and local phrase-level information from an original medical text query, which helps the intent prediction. We also utilize extra knowledge like part-of-speech tags and named entity tags to enrich feature information. Based on the experiments on a health community query intent(HCQI) dataset, we compare our model with baseline models and experiment results demonstrate the effectiveness of our model.
机译:了解用户查询Intent是质疑应答区域的重要任务。随着在线卫生服务的发展,在线健康社区产生大量有价值的医疗问答数据,可以在其中开采用户意图。但是,普通用户发布的查询有许多域概念和口语表达,这使得对用户意图的理解非常困难。在本文中,我们尝试从现实的医疗文本查询中查找和预测用户意图。提出了一种CNN-LSTM注意模型来预测用户意图,并且将无监督的聚类方法应用于矿山用户意图分类。 CNN-LSTM注意模型具有CNN编码器和Bi-LSTM注意编码器。两个编码器可以从原始医疗文本查询捕获全局语义表达式和本地短语级信息,这有助于意向预测。我们还利用额外的知识,如语音部分标签和命名实体标签,以丰富功能信息。基于健康界查询意图(HCQI)数据集的实验,我们将我们的模型与基线模型进行比较,实验结果证明了我们模型的有效性。

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